Testing an AI Large Language Model Tool for Cognitive Debiasing in Musculoskeletal Care
A patient's experience of physical discomfort and incapability is closely tied to how they interpret bodily sensations. The human mind is a meaning-making system that rapidly forms stories and assumptions about internal experiences. When individuals experience musculoskeletal pain or dysfunction, their initial interpretations often fall into broad cognitive categories: (1) harm that requires rest and protection; (2) threat to valued roles and activities; or (3) the belief that symptom elimination is the sole path to recovery. These automatic, unconscious interpretations can be adaptive in acute or dangerous situations, but they may also lead to biased or inaccurate symptom appraisals. When misaligned with the underlying pathology, such heuristics can exacerbate emotional distress, delay accurate diagnosis, and drive unnecessary investigations or treatments. The challenge, therefore, lies in supporting patients to reframe these beliefs and engage with their symptoms more adaptively. Cognitive debiasing strategies have emerged as a promising approach to address this concern. These strategies aim to slow down automatic thinking, challenge entrenched assumptions, and promote more flexible, reflective, and value-aligned reasoning. By encouraging a more nuanced understanding of bodily signals, cognitive debiasing may improve the quality of clinical decisions and overall patient experience-offering advantages over traditional educational or informational tools. Recent advances in Artificial Intelligence (AI), particularly the rise of Large Language Models (LLMs), have opened new possibilities for enhancing cognitive debiasing interventions. LLMs such as ChatGPT can analyze and synthesize patient-reported symptoms and beliefs to generate supportive, plain-language summaries of their thinking. This process may help patients recognize their own interpretive patterns and consider alternative, less distressing explanations for their symptoms. In parallel, LLMs can assist clinicians by flagging potentially unhelpful or distorted beliefs prior to a consultation, allowing for more tailored and empathic communication. This trial tests whether a structured, LLM-facilitated debiasing intervention can better support accurate symptom appraisal and enhance the clinical encounter, compared to LLM-generated diagnosis alone. This work builds on the recognition that there is wide variation in musculoskeletal care experience and decision-making, with existing tools such as decision aids and question prompt lists often falling short in challenging rigid or unhelpful thinking patterns.
- Sex: ALL
- Minimum Age: 18 Years
Researchers look for people who fit a certain description, called eligibility criteria. Below are the inclusion and exclusion criteria for study participants:
Inclusion Criteria
- Adults (18+)
- New or return patient seeking musculoskeletal specialty care at an Orthopedic outpatient clinic
- Total combined score on the 6 feelings and thoughts items of > 10* (Appendix 3 of study protocol)
- English-speaking
- Pre-visit diagnosis of chronic, non-traumatic musculoskeletal condition (including, but not limited to: osteoarthritis, carpal tunnel syndrome, trigger digit, Dupuytren's, De Quervain's, lateral epicondylitis)
Exlusion Criteria
- Any impairment preventing completion of surveys on a tablet
Conditions
The disease, disorder, syndrome, illness, or injury that is being studied.
Any Chronic, Non-traumatic Orthopedic ConditionIntervention/Treatment
Intervention/Treatment
- BEHAVIORAL : LLM-facilitated cognitive debiasing aid
Sponsor
University of Texas at Austin
Principal Investigator(s)
- David Ring, MD, PhD, STUDY_DIRECTOR, Dell Medical School, University of Texas at Austin, TX, United States
Phase
- NA